Deep residual networks for crystallography trained on synthetic data

被引:1
|
作者
Mendez, Derek [1 ]
Holton, James M. [1 ,2 ,3 ]
Lyubimov, Artem Y. [1 ]
Hollatz, Sabine [1 ]
Mathews, Irimpan I. [1 ]
Cichosz, Aleksander [4 ]
Martirosyan, Vardan [5 ]
Zeng, Teo [4 ]
Stofer, Ryan [4 ]
Liu, Ruobin [4 ]
Song, Jinhu [1 ]
McPhillips, Scott [1 ]
Soltis, Mike [1 ]
Cohen, Aina E. [1 ]
机构
[1] SLAC Natl Accelerator Lab, Stanford Synchrotron Radiat Lightsource, Menlo Pk, CA 94025 USA
[2] Lawrence Berkeley Natl Lab, Mol Biophys & Integrated Bioimaging Div, Berkeley, CA 94720 USA
[3] UC San Francisco, Dept Biochem & Biophys, San Francisco, CA 94158 USA
[4] UC Santa Barbara, Dept Stat & Appl Probabil, Santa Barbara, CA 93106 USA
[5] UC Santa Barbara, Dept Math, Santa Barbara, CA 93106 USA
关键词
artificial intelligence; serial crystallography; rotation crystallography; synchrotrons; XFELs; MACROMOLECULAR CRYSTALLOGRAPHY; DATA-COLLECTION; FEMTOSECOND CRYSTALLOGRAPHY; SAMPLE DELIVERY; PUMP; INSTRUMENT; RESOLUTION; LIGAND; CHIP; ICE;
D O I
10.1107/S2059798323010586
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
The use of artificial intelligence to process diffraction images is challenged by the need to assemble large and precisely designed training data sets. To address this, a codebase called Resonet was developed for synthesizing diffraction data and training residual neural networks on these data. Here, two per-pattern capabilities of Resonet are demonstrated: (i) interpretation of crystal resolution and (ii) identification of overlapping lattices. Resonet was tested across a compilation of diffraction images from synchrotron experiments and X-ray free-electron laser experiments. Crucially, these models readily execute on graphics processing units and can thus significantly outperform conventional algorithms. While Resonet is currently utilized to provide real-time feedback for macro-molecular crystallography users at the Stanford Synchrotron Radiation Lightsource, its simple Python-based interface makes it easy to embed in other processing frameworks. This work highlights the utility of physics-based simulation for training deep neural networks and lays the groundwork for the development of additional models to enhance diffraction collection and analysis.
引用
收藏
页码:26 / 43
页数:18
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